# Copyright (c) 2025, NVIDIA CORPORATION. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import copy import glob import os from pathlib import Path import jiwer import pytest import torch from omegaconf import open_dict from tqdm import tqdm from nemo.collections.asr.models import ASRModel from nemo.collections.asr.models.ctc_models import EncDecCTCModel from nemo.collections.asr.parts.submodules.ctc_beam_decoding import BeamBatchedCTCInfer from nemo.collections.asr.parts.submodules.ngram_lm import NGramGPULanguageModel from nemo.collections.asr.parts.submodules.rnnt_beam_decoding import BeamBatchedRNNTInfer from nemo.collections.asr.parts.submodules.tdt_beam_decoding import BeamBatchedTDTInfer from nemo.collections.asr.parts.utils import rnnt_utils from nemo.core.utils import numba_utils from nemo.core.utils.cuda_python_utils import skip_cuda_python_test_if_cuda_graphs_conditional_nodes_not_supported from nemo.core.utils.numba_utils import __NUMBA_MINIMUM_VERSION__ from tests.collections.asr.decoding.utils import load_audio RNNT_MODEL = "stt_en_conformer_transducer_small" CTC_MODEL = "nvidia/stt_en_conformer_ctc_small" TDT_MODEL = "nvidia/stt_en_fastconformer_tdt_large" MAX_SAMPLES = 10 DEVICES = [torch.device("cpu")] if torch.cuda.is_available(): DEVICES.append(torch.device('cuda')) NUMBA_RNNT_LOSS_AVAILABLE = numba_utils.numba_cpu_is_supported( __NUMBA_MINIMUM_VERSION__ ) or numba_utils.numba_cuda_is_supported(__NUMBA_MINIMUM_VERSION__) # available audio filename fixtures @pytest.fixture(scope="module") def test_audio_filenames(test_data_dir): return tuple(glob.glob(os.path.join(test_data_dir, "asr", "test", "an4", "wav", "*.wav"))) # model fixtures @pytest.fixture(scope="module") def rnnt_model(): model = ASRModel.from_pretrained(model_name=RNNT_MODEL, map_location="cpu") model.eval() return model @pytest.fixture(scope="module") def tdt_model(): model = ASRModel.from_pretrained(model_name=TDT_MODEL, map_location="cpu") model.eval() return model @pytest.fixture(scope="module") def ctc_model(): model = ASRModel.from_pretrained(model_name=CTC_MODEL, map_location="cpu") model.eval() return model # encoder output fixtures @pytest.fixture(scope="module") def get_rnnt_encoder_output(rnnt_model, test_audio_filenames): encoder_output, encoded_lengths = get_transducer_model_encoder_output( test_audio_filenames, MAX_SAMPLES, rnnt_model ) return encoder_output, encoded_lengths @pytest.fixture(scope="module") def get_tdt_encoder_output(tdt_model, test_audio_filenames): encoder_output, encoded_lengths = get_transducer_model_encoder_output(test_audio_filenames, MAX_SAMPLES, tdt_model) return encoder_output, encoded_lengths @pytest.fixture(scope="module") def get_ctc_output(ctc_model, test_audio_filenames): encoder_output, encoded_lengths = get_ctc_model_output(test_audio_filenames, MAX_SAMPLES, ctc_model) return encoder_output, encoded_lengths @pytest.fixture(scope="module") def kenlm_model_path(tmp_path_factory, test_data_dir): lm_path = Path(test_data_dir) / "asr/kenlm_ngram_lm/parakeet-tdt_ctc-110m-libri-1024.kenlm.tmp.arpa" assert os.path.exists(lm_path), f"LM file not found: {lm_path}" lm_nemo_path = tmp_path_factory.mktemp("lm") / f"{lm_path.name}.nemo" NGramGPULanguageModel.from_file(lm_path, vocab_size=1024).save_to(f"{lm_nemo_path}") return f"{lm_nemo_path}" def get_transducer_model_encoder_output( test_audio_filenames, num_samples: int, model: ASRModel, device: torch.device = torch.device("cpu"), dtype: torch.dtype = torch.float32, ): audio_filepaths = test_audio_filenames[:num_samples] with torch.no_grad(): model.preprocessor.featurizer.dither = 0.0 model.preprocessor.featurizer.pad_to = 0 model.eval() all_inputs, all_lengths = [], [] for audio_file in tqdm(audio_filepaths, desc="Loading audio files"): audio_tensor, _ = load_audio(audio_file) all_inputs.append(audio_tensor) all_lengths.append(torch.tensor(audio_tensor.shape[0], dtype=torch.int64)) input_batch = torch.nn.utils.rnn.pad_sequence(all_inputs, batch_first=True).to(device=device, dtype=dtype) length_batch = torch.tensor(all_lengths, dtype=torch.int64).to(device) encoded_outputs, encoded_length = model(input_signal=input_batch, input_signal_length=length_batch) return encoded_outputs, encoded_length def get_ctc_model_output( test_audio_filenames, num_samples: int, model: ASRModel, device: torch.device = torch.device("cpu"), dtype: torch.dtype = torch.float32, ): audio_filepaths = test_audio_filenames[:num_samples] with torch.no_grad(): model.preprocessor.featurizer.dither = 0.0 model.preprocessor.featurizer.pad_to = 0 model.eval() all_inputs, all_lengths = [], [] for audio_file in tqdm(audio_filepaths, desc="Loading audio files"): audio_tensor, _ = load_audio(audio_file) all_inputs.append(audio_tensor) all_lengths.append(torch.tensor(audio_tensor.shape[0], dtype=torch.int64)) input_batch = torch.nn.utils.rnn.pad_sequence(all_inputs, batch_first=True).to(device=device, dtype=dtype) length_batch = torch.tensor(all_lengths, dtype=torch.int64).to(device) log_probs, encoded_length, _ = model(input_signal=input_batch, input_signal_length=length_batch) return log_probs, encoded_length def print_unit_test_info(strategy, batch_size, beam_size, allow_cuda_graphs, device): print( f"""Beam search algorithm: {strategy}, Batch size: {batch_size}, Beam size: {beam_size}, Cuda Graphs: {allow_cuda_graphs}, Decoding device: {device} """ ) def check_res_best_hyps(num_samples, hyps): assert type(hyps) == list assert type(hyps[0]) == rnnt_utils.Hypothesis assert len(hyps) == num_samples assert all( [ hasattr(hyps[hyp_idx], "y_sequence") and hasattr(hyps[hyp_idx], "score") and hasattr(hyps[hyp_idx], "timestamp") for hyp_idx in range(num_samples) ] ) def print_res_best_hyps(hyps): for hyp_idx, hyp in enumerate(hyps): print("Sample: ", hyp_idx) print("Decoded text: ", hyp.text) print("Score: ", hyp.score) print("Transcript", hyp.y_sequence) print("Timesteps", hyp.timestamp) print() def check_res_nbest_hyps(num_samples, batch_nbest_hyps): assert type(batch_nbest_hyps) == list assert type(batch_nbest_hyps[0]) == rnnt_utils.NBestHypotheses assert len(batch_nbest_hyps) == num_samples for idx in range(num_samples): assert all( [ hasattr(batch_nbest_hyps[idx].n_best_hypotheses[hyp_idx], "y_sequence") and hasattr(batch_nbest_hyps[idx].n_best_hypotheses[hyp_idx], "score") and hasattr(batch_nbest_hyps[idx].n_best_hypotheses[hyp_idx], "timestamp") for hyp_idx in range(len(batch_nbest_hyps[idx].n_best_hypotheses)) ] ) assert all( [ len(batch_nbest_hyps[idx].n_best_hypotheses[hyp_idx].y_sequence) > 0 and len(batch_nbest_hyps[idx].n_best_hypotheses[hyp_idx].timestamp) > 0 for hyp_idx in range(len(batch_nbest_hyps[idx].n_best_hypotheses)) ] ) def print_res_nbest_hyps(batch_nbest_hyps): for batch_idx, nbest_hyps in enumerate(batch_nbest_hyps): print(f"Batch idx: {batch_idx}") for idx, hyp in enumerate(nbest_hyps): print(f"Hyp index: {idx + 1}") print("Text: ", hyp.text) print("Score: ", hyp.score) print("Transcripts: ", hyp.y_sequence) print("Timesteps: ", hyp.timestamp) print() def decode_text_from_hypotheses(hyps, model): if isinstance(model, EncDecCTCModel): return model.decoding.decode_hypothesis(hyps, fold_consecutive=False) else: return model.decoding.decode_hypothesis(hyps) def decode_text_from_nbest_hypotheses(hyps, model): if isinstance(model, EncDecCTCModel): return [ model.decoding.decode_hypothesis(nbest_hyp.n_best_hypotheses, fold_consecutive=False) for nbest_hyp in hyps ] else: return [model.decoding.decode_hypothesis(nbest_hyp.n_best_hypotheses) for nbest_hyp in hyps] class TestRNNTDecoding: @pytest.mark.skipif( not NUMBA_RNNT_LOSS_AVAILABLE, reason='RNNTLoss has not been compiled with appropriate numba version.', ) @pytest.mark.with_downloads @pytest.mark.unit @pytest.mark.parametrize( "beam_config", [ {"search_type": "malsd_batch", "allow_cuda_graphs": False}, {"search_type": "malsd_batch", "allow_cuda_graphs": True}, {"search_type": "maes_batch", "allow_cuda_graphs": False}, ], ) @pytest.mark.parametrize("beam_size", [4]) @pytest.mark.parametrize("batch_size", [4, 16]) @pytest.mark.parametrize("device", DEVICES) def test_rnnt_beam_decoding_return_best_hypothesis( self, test_audio_filenames, rnnt_model, get_rnnt_encoder_output, beam_config, device, batch_size, beam_size ): num_samples = min(batch_size, len(test_audio_filenames)) model = rnnt_model.to(device) encoder_output, encoded_lengths = get_rnnt_encoder_output encoder_output, encoded_lengths = encoder_output[:num_samples].to(device), encoded_lengths[:num_samples].to( device ) vocab_size = model.tokenizer.vocab_size decoding = BeamBatchedRNNTInfer( model.decoder, model.joint, blank_index=vocab_size, beam_size=beam_size, score_norm=True, return_best_hypothesis=True, **beam_config, ) print_unit_test_info( strategy=beam_config['search_type'], batch_size=batch_size, beam_size=beam_size, allow_cuda_graphs=beam_config.get('allow_cuda_graphs', True), device=device, ) with torch.no_grad(): hyps = decoding(encoder_output=encoder_output, encoded_lengths=encoded_lengths)[0] check_res_best_hyps(num_samples, hyps) hyps = decode_text_from_hypotheses(hyps, model) print_res_best_hyps(hyps) @pytest.mark.skipif( not NUMBA_RNNT_LOSS_AVAILABLE, reason='RNNTLoss has not been compiled with appropriate numba version.', ) @pytest.mark.with_downloads @pytest.mark.unit @pytest.mark.skipif(not torch.cuda.is_available(), reason="Test is only GPU-based decoding") @pytest.mark.parametrize( "beam_config", [ {"search_type": "malsd_batch", "allow_cuda_graphs": False}, {"search_type": "malsd_batch", "allow_cuda_graphs": True}, {"search_type": "maes_batch", "allow_cuda_graphs": False}, ], ) @pytest.mark.parametrize("beam_size", [4]) @pytest.mark.parametrize("batch_size", [4]) def test_rnnt_beam_decoding_return_nbest( self, test_audio_filenames, rnnt_model, get_rnnt_encoder_output, beam_config, device, beam_size, batch_size ): device = torch.device("cuda") num_samples = min(batch_size, len(test_audio_filenames)) model = rnnt_model.to(device) encoder_output, encoded_lengths = get_rnnt_encoder_output encoder_output, encoded_lengths = encoder_output[:num_samples].to(device), encoded_lengths[:num_samples].to( device ) vocab_size = model.tokenizer.vocab_size decoding = BeamBatchedRNNTInfer( model.decoder, model.joint, blank_index=vocab_size, beam_size=beam_size, score_norm=True, return_best_hypothesis=False, **beam_config, ) print_unit_test_info( strategy=beam_config['search_type'], batch_size=batch_size, beam_size=beam_size, allow_cuda_graphs=beam_config.get('allow_cuda_graphs', True), device=device, ) with torch.no_grad(): batch_nbest_hyps = decoding(encoder_output=encoder_output, encoded_lengths=encoded_lengths)[0] check_res_nbest_hyps(num_samples, batch_nbest_hyps) batch_nbest_hyps = decode_text_from_nbest_hypotheses(batch_nbest_hyps, model) print_res_nbest_hyps(batch_nbest_hyps) @pytest.mark.skipif( not NUMBA_RNNT_LOSS_AVAILABLE, reason='RNNTLoss has not been compiled with appropriate numba version.', ) @pytest.mark.with_downloads @pytest.mark.unit @pytest.mark.skipif(not torch.cuda.is_available(), reason="Test is only GPU-based decoding") @pytest.mark.parametrize( "beam_config", [ {"search_type": "malsd_batch", "allow_cuda_graphs": False}, {"search_type": "maes_batch", "allow_cuda_graphs": False}, {"search_type": "malsd_batch", "allow_cuda_graphs": True}, ], ) @pytest.mark.parametrize("batch_size", [4]) @pytest.mark.parametrize("beam_size", [4]) @pytest.mark.parametrize("pruning_mode", ["late", "early"]) @pytest.mark.parametrize("blank_lm_score_mode", ["no_score", "lm_weighted_full"]) def test_rnnt_beam_decoding_kenlm( self, kenlm_model_path, test_audio_filenames, rnnt_model, get_rnnt_encoder_output, beam_config, device, batch_size, beam_size, pruning_mode, blank_lm_score_mode, ): device = torch.device("cuda") num_samples = min(batch_size, len(test_audio_filenames)) model = rnnt_model.to(device) encoder_output, encoded_lengths = get_rnnt_encoder_output encoder_output, encoded_lengths = encoder_output[:num_samples].to(device), encoded_lengths[:num_samples].to( device ) vocab_size = model.tokenizer.vocab_size fusion_models = [NGramGPULanguageModel.from_file(lm_path=kenlm_model_path, vocab_size=vocab_size)] fusion_models_alpha = [0.3] decoding = BeamBatchedRNNTInfer( model.decoder, model.joint, blank_index=vocab_size, beam_size=beam_size, score_norm=True, return_best_hypothesis=True, pruning_mode=pruning_mode, blank_lm_score_mode=blank_lm_score_mode, fusion_models=fusion_models, fusion_models_alpha=fusion_models_alpha, **beam_config, ) print_unit_test_info( strategy=beam_config['search_type'], batch_size=batch_size, beam_size=beam_size, allow_cuda_graphs=beam_config.get('allow_cuda_graphs', True), device=device, ) with torch.no_grad(): hyps = decoding(encoder_output=encoder_output, encoded_lengths=encoded_lengths)[0] check_res_best_hyps(num_samples, hyps) hyps = decode_text_from_hypotheses(hyps, model) print_res_best_hyps(hyps) class TestTDTDecoding: @pytest.mark.skipif( not NUMBA_RNNT_LOSS_AVAILABLE, reason='RNNTLoss has not been compiled with appropriate numba version.', ) @pytest.mark.with_downloads @pytest.mark.unit @pytest.mark.parametrize( "beam_config", [ {"search_type": "malsd_batch", "allow_cuda_graphs": False}, {"search_type": "malsd_batch", "allow_cuda_graphs": True}, ], ) @pytest.mark.parametrize("beam_size", [4]) @pytest.mark.parametrize("batch_size", [4, 16]) @pytest.mark.parametrize("device", DEVICES) def test_tdt_beam_decoding_return_best_hypothesis( self, test_audio_filenames, tdt_model, get_tdt_encoder_output, beam_config, device, batch_size, beam_size ): num_samples = min(batch_size, len(test_audio_filenames)) model = tdt_model.to(device) encoder_output, encoded_lengths = get_tdt_encoder_output encoder_output, encoded_lengths = encoder_output[:num_samples].to(device), encoded_lengths[:num_samples].to( device ) model_config = model.to_config_dict() durations = list(model_config["model_defaults"]["tdt_durations"]) vocab_size = model.tokenizer.vocab_size decoding = BeamBatchedTDTInfer( model.decoder, model.joint, blank_index=vocab_size, durations=durations, beam_size=beam_size, score_norm=True, return_best_hypothesis=True, **beam_config, ) print_unit_test_info( strategy=beam_config['search_type'], batch_size=batch_size, beam_size=beam_size, allow_cuda_graphs=beam_config.get('allow_cuda_graphs', True), device=device, ) with torch.no_grad(): hyps = decoding(encoder_output=encoder_output, encoded_lengths=encoded_lengths)[0] check_res_best_hyps(num_samples, hyps) hyps = decode_text_from_hypotheses(hyps, model) print_res_best_hyps(hyps) @pytest.mark.skipif( not NUMBA_RNNT_LOSS_AVAILABLE, reason='RNNTLoss has not been compiled with appropriate numba version.', ) @pytest.mark.with_downloads @pytest.mark.unit @pytest.mark.skipif(not torch.cuda.is_available(), reason="Test is only GPU-based decoding") @pytest.mark.parametrize( "beam_config", [ {"search_type": "malsd_batch", "allow_cuda_graphs": False}, {"search_type": "malsd_batch", "allow_cuda_graphs": True}, ], ) @pytest.mark.parametrize("beam_size", [4]) @pytest.mark.parametrize("batch_size", [4]) def test_tdt_beam_decoding_return_nbest( self, test_audio_filenames, tdt_model, get_tdt_encoder_output, beam_config, device, beam_size, batch_size ): device = torch.device("cuda") num_samples = min(batch_size, len(test_audio_filenames)) model = tdt_model.to(device) encoder_output, encoded_lengths = get_tdt_encoder_output encoder_output, encoded_lengths = encoder_output[:num_samples].to(device), encoded_lengths[:num_samples].to( device ) model_config = model.to_config_dict() durations = list(model_config["model_defaults"]["tdt_durations"]) vocab_size = model.tokenizer.vocab_size decoding = BeamBatchedTDTInfer( model.decoder, model.joint, blank_index=vocab_size, durations=durations, beam_size=beam_size, score_norm=True, return_best_hypothesis=False, **beam_config, ) print_unit_test_info( strategy=beam_config['search_type'], batch_size=batch_size, beam_size=beam_size, allow_cuda_graphs=beam_config.get('allow_cuda_graphs', True), device=device, ) with torch.no_grad(): batch_nbest_hyps = decoding(encoder_output=encoder_output, encoded_lengths=encoded_lengths)[0] check_res_nbest_hyps(num_samples, batch_nbest_hyps) batch_nbest_hyps = decode_text_from_nbest_hypotheses(batch_nbest_hyps, model) print_res_nbest_hyps(batch_nbest_hyps) @pytest.mark.skipif( not NUMBA_RNNT_LOSS_AVAILABLE, reason='RNNTLoss has not been compiled with appropriate numba version.', ) @pytest.mark.with_downloads @pytest.mark.unit @pytest.mark.skipif(not torch.cuda.is_available(), reason="Test is only GPU-based decoding") @pytest.mark.parametrize( "beam_config", [ {"search_type": "malsd_batch", "allow_cuda_graphs": False}, {"search_type": "malsd_batch", "allow_cuda_graphs": True}, ], ) @pytest.mark.parametrize("batch_size", [4]) @pytest.mark.parametrize("beam_size", [4]) @pytest.mark.parametrize("pruning_mode", ["late", "early"]) @pytest.mark.parametrize("blank_lm_score_mode", ["lm_weighted_full", "no_score"]) def test_tdt_beam_decoding_kenlm( self, kenlm_model_path, test_audio_filenames, tdt_model, get_tdt_encoder_output, beam_config, device, batch_size, beam_size, pruning_mode, blank_lm_score_mode, ): device = torch.device("cuda") num_samples = min(batch_size, len(test_audio_filenames)) model = tdt_model.to(device) encoder_output, encoded_lengths = get_tdt_encoder_output encoder_output, encoded_lengths = encoder_output[:num_samples].to(device), encoded_lengths[:num_samples].to( device ) model_config = model.to_config_dict() durations = list(model_config["model_defaults"]["tdt_durations"]) vocab_size = model.tokenizer.vocab_size fusion_models = [NGramGPULanguageModel.from_file(lm_path=kenlm_model_path, vocab_size=vocab_size)] fusion_models_alpha = [0.3] decoding = BeamBatchedTDTInfer( model.decoder, model.joint, blank_index=vocab_size, durations=durations, beam_size=beam_size, score_norm=True, return_best_hypothesis=True, pruning_mode=pruning_mode, blank_lm_score_mode=blank_lm_score_mode, fusion_models=fusion_models, fusion_models_alpha=fusion_models_alpha, **beam_config, ) print_unit_test_info( strategy=beam_config['search_type'], batch_size=batch_size, beam_size=beam_size, allow_cuda_graphs=beam_config.get('allow_cuda_graphs', True), device=device, ) with torch.no_grad(): hyps = decoding(encoder_output=encoder_output, encoded_lengths=encoded_lengths)[0] check_res_best_hyps(num_samples, hyps) hyps = decode_text_from_hypotheses(hyps, model) print_res_best_hyps(hyps) class TestTransducerCudaGraphBeamDecoding: """ Tests CudaGraphs implementations from Transducer models (RNN-T and TDT) """ @pytest.mark.with_downloads @pytest.mark.skipif(not torch.cuda.is_available(), reason="CUDA decoder can run only on CUDA") @pytest.mark.parametrize("force_mode", ["no_graphs", "no_while_loops", "full_graph"]) @pytest.mark.parametrize("model_type", ["rnnt", "tdt"]) def test_stated_stateless(self, test_audio_filenames, rnnt_model, tdt_model, model_type, force_mode: str): """ Compares pure Pytorch and with three modes of statefull implementations for double floating point precision. 1. Pure pytorch, but statefull implementation: no_graphs 2. With CudaGrpahs: no_while_loops and full_graph. """ if force_mode == "full_graph": skip_cuda_python_test_if_cuda_graphs_conditional_nodes_not_supported() batch_size = 16 device = torch.device("cuda") model = rnnt_model.to(device) if model_type == "rnnt" else tdt_model.to(device) decoding_config = copy.deepcopy(model.cfg.decoding) with open_dict(decoding_config): decoding_config["strategy"] = "malsd_batch" decoding_config["beam"]["beam_size"] = 4 decoding_config["beam"]["return_best_hypothesis"] = False decoding_config["beam"]["allow_cuda_graphs"] = False model.change_decoding_strategy(decoding_config) actual_hypotheses = model.transcribe(test_audio_filenames, batch_size=batch_size, num_workers=None) actual_transcripts = [[hyp.text for hyp in actual_beam] for actual_beam in actual_hypotheses] actual_scores = [[hyp.score for hyp in actual_beam] for actual_beam in actual_hypotheses] actual_timestamps = [[hyp.timestamp for hyp in actual_beam] for actual_beam in actual_hypotheses] # transcribe with use implementation with cuda graphs decoding_config["beam"]["allow_cuda_graphs"] = True model.change_decoding_strategy(decoding_config) model.decoding.decoding._decoding_computer.force_cuda_graphs_mode(mode=force_mode) cudagraph_hypotheses = model.transcribe(test_audio_filenames, batch_size=batch_size, num_workers=None) cudagraph_transcripts = [[hyp.text for hyp in cudagraphs_beam] for cudagraphs_beam in cudagraph_hypotheses] cudagraph_scores = [[hyp.score for hyp in cudagraph_beam] for cudagraph_beam in cudagraph_hypotheses] cudagraph_timestamps = [[hyp.timestamp for hyp in cudagraph_beam] for cudagraph_beam in cudagraph_hypotheses] for batch_idx in range(min(batch_size, len(test_audio_filenames))): assert len(actual_transcripts[batch_idx]) == len(cudagraph_transcripts[batch_idx]) assert cudagraph_scores[batch_idx] == pytest.approx( actual_scores[batch_idx], abs=1e-2 ), f"Scores mismatch for batch_idx {batch_idx}" assert ( cudagraph_timestamps[batch_idx] == actual_timestamps[batch_idx] ), f"Timestamps mismatch for batch_idx {batch_idx}" wer = jiwer.wer(actual_transcripts[batch_idx], cudagraph_transcripts[batch_idx]) assert wer <= 1e-3, "Cuda graph greedy decoder should match original decoder implementation." for actual, fast in zip(actual_transcripts[batch_idx], cudagraph_transcripts[batch_idx]): if actual != fast: print("Erroneous samples in batch:", batch_idx) print("Original transcript:", actual) print("New transcript:", fast) @pytest.mark.with_downloads @pytest.mark.skipif( not (torch.cuda.is_available() and torch.cuda.is_bf16_supported()), reason="CUDA decoder can run only on CUDA" ) @pytest.mark.parametrize("model_type", ["rnnt", "tdt"]) def test_stated_stateless_bf16(self, test_audio_filenames, rnnt_model, tdt_model, model_type): """ Checks that we are able to run without errors all decodings in bfloat16. Computational errors accumulate, so just checking if algorithms run without errors """ batch_size = 16 device = torch.device("cuda") model = rnnt_model.to(device) if model_type == "rnnt" else tdt_model.to(device) decoding_config = copy.deepcopy(model.cfg.decoding) # checking pytorch implementation with open_dict(decoding_config): decoding_config["strategy"] = "malsd_batch" decoding_config["beam"]["beam_size"] = 4 decoding_config["beam"]["return_best_hypothesis"] = False decoding_config["beam"]["allow_cuda_graphs"] = False model.change_decoding_strategy(decoding_config) with torch.cuda.amp.autocast(dtype=torch.bfloat16, enabled=True): model.transcribe(test_audio_filenames, batch_size=batch_size, num_workers=None) modes = ["no_graphs", "no_while_loops", "full_graph"] for force_mode in modes: if force_mode == "full_graph": skip_cuda_python_test_if_cuda_graphs_conditional_nodes_not_supported() # transcribe with use implementation with cuda graphs decoding_config["beam"]["allow_cuda_graphs"] = True model.change_decoding_strategy(decoding_config) model.decoding.decoding._decoding_computer.force_cuda_graphs_mode(mode=force_mode) with torch.cuda.amp.autocast(dtype=torch.bfloat16, enabled=True): model.transcribe(test_audio_filenames, batch_size=batch_size, num_workers=None) class TestCTCDecoding: @pytest.mark.with_downloads @pytest.mark.unit @pytest.mark.parametrize( "beam_config", [ {"allow_cuda_graphs": False}, {"allow_cuda_graphs": True}, ], ) @pytest.mark.parametrize("beam_size", [4]) @pytest.mark.parametrize("batch_size", [4, 16]) @pytest.mark.parametrize("device", DEVICES) def test_ctc_beam_decoding_return_best_hypothesis( self, test_audio_filenames, ctc_model, get_ctc_output, beam_config, device, batch_size, beam_size ): num_samples = min(batch_size, len(test_audio_filenames)) model = ctc_model.to(device) log_probs, encoded_lengths = get_ctc_output log_probs, encoded_lengths = log_probs[:num_samples].to(device), encoded_lengths[:num_samples].to(device) vocab_size = model.tokenizer.vocab_size decoding = BeamBatchedCTCInfer( blank_index=vocab_size, beam_size=beam_size, return_best_hypothesis=True, **beam_config, ) print_unit_test_info( strategy="beam_batch", batch_size=batch_size, beam_size=beam_size, allow_cuda_graphs=beam_config.get('allow_cuda_graphs', True), device=device, ) with torch.no_grad(): hyps = decoding(decoder_output=log_probs, decoder_lengths=encoded_lengths)[0] check_res_best_hyps(num_samples, hyps) hyps = decode_text_from_hypotheses(hyps, model) print_res_best_hyps(hyps) @pytest.mark.with_downloads @pytest.mark.unit @pytest.mark.skipif(not torch.cuda.is_available(), reason="Test is only GPU-based decoding") @pytest.mark.parametrize( "beam_config", [ {"allow_cuda_graphs": False}, {"allow_cuda_graphs": True}, ], ) @pytest.mark.parametrize("beam_size", [4]) @pytest.mark.parametrize("batch_size", [4]) def test_ctc_beam_decoding_return_nbest( self, test_audio_filenames, ctc_model, get_ctc_output, beam_config, device, beam_size, batch_size ): device = torch.device("cuda") num_samples = min(batch_size, len(test_audio_filenames)) model = ctc_model.to(device) log_probs, encoded_lengths = get_ctc_output log_probs, encoded_lengths = log_probs[:num_samples].to(device), encoded_lengths[:num_samples].to(device) vocab_size = model.tokenizer.vocab_size decoding = BeamBatchedCTCInfer( blank_index=vocab_size, beam_size=beam_size, return_best_hypothesis=False, **beam_config, ) print_unit_test_info( strategy="beam_batch", batch_size=batch_size, beam_size=beam_size, allow_cuda_graphs=beam_config.get('allow_cuda_graphs', True), device=device, ) with torch.no_grad(): batch_nbest_hyps = decoding(decoder_output=log_probs, decoder_lengths=encoded_lengths)[0] check_res_nbest_hyps(num_samples, batch_nbest_hyps) batch_nbest_hyps = decode_text_from_nbest_hypotheses(batch_nbest_hyps, model) print_res_nbest_hyps(batch_nbest_hyps) @pytest.mark.with_downloads @pytest.mark.unit @pytest.mark.skipif(not torch.cuda.is_available(), reason="Test is only GPU-based decoding") @pytest.mark.parametrize( "beam_config", [ {"allow_cuda_graphs": False, "ngram_lm_alpha": 0.3, "beam_beta": 1.0}, {"allow_cuda_graphs": False, "ngram_lm_alpha": 0.3, "beam_beta": 1.0}, ], ) @pytest.mark.parametrize("batch_size", [4]) @pytest.mark.parametrize("beam_size", [4]) def test_ctc_beam_decoding_kenlm( self, kenlm_model_path, test_audio_filenames, ctc_model, get_ctc_output, beam_config, device, batch_size, beam_size, ): device = torch.device("cuda") beam_config["ngram_lm_model"] = kenlm_model_path num_samples = min(batch_size, len(test_audio_filenames)) model = ctc_model.to(device) decoder_output, decoder_lengths = get_ctc_output decoder_output, decoder_lengths = decoder_output[:num_samples].to(device), decoder_lengths[:num_samples].to( device ) vocab_size = model.tokenizer.vocab_size decoding = BeamBatchedCTCInfer( blank_index=vocab_size, beam_size=beam_size, return_best_hypothesis=True, **beam_config, ) print_unit_test_info( strategy="beam_batch", batch_size=batch_size, beam_size=beam_size, allow_cuda_graphs=beam_config.get('allow_cuda_graphs', True), device=device, ) with torch.no_grad(): hyps = decoding(decoder_output=decoder_output, decoder_lengths=decoder_lengths)[0] check_res_best_hyps(num_samples, hyps) hyps = decode_text_from_hypotheses(hyps, model) print_res_best_hyps(hyps)